English

Speech-to-See: End-to-End Speech-Driven Open-Set Object Detection

Sound 2025-09-23 v1 Multimedia Audio and Speech Processing

Abstract

Audio grounding, or speech-driven open-set object detection, aims to localize and identify objects directly from speech, enabling generalization beyond predefined categories. This task is crucial for applications like human-robot interaction where textual input is impractical. However, progress in this domain faces a fundamental bottleneck from the scarcity of large-scale, paired audio-image data, and is further constrained by previous methods that rely on indirect, text-mediated pipelines. In this paper, we introduce Speech-to-See (Speech2See), an end-to-end approach built on a pre-training and fine-tuning paradigm. Specifically, in the pre-training stage, we design a Query-Guided Semantic Aggregation module that employs learnable queries to condense redundant speech embeddings into compact semantic representations. During fine-tuning, we incorporate a parameter-efficient Mixture-of-LoRA-Experts (MoLE) architecture to achieve deeper and more nuanced cross-modal adaptation. Extensive experiments show that Speech2See achieves robust and adaptable performance across multiple benchmarks, demonstrating its strong generalization ability and broad applicability.

Keywords

Cite

@article{arxiv.2509.16670,
  title  = {Speech-to-See: End-to-End Speech-Driven Open-Set Object Detection},
  author = {Wenhuan Lu and Xinyue Song and Wenjun Ke and Zhizhi Yu and Wenhao Yang and Jianguo Wei},
  journal= {arXiv preprint arXiv:2509.16670},
  year   = {2025}
}
R2 v1 2026-07-01T05:47:15.559Z